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首页> 外文期刊>IEEE Transactions on Signal Processing >Estimation of parameters of exponentially damped sinusoids using fast maximum likelihood estimation with application to NMR spectroscopy data
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Estimation of parameters of exponentially damped sinusoids using fast maximum likelihood estimation with application to NMR spectroscopy data

机译:使用快速最大似然估计并使用NMR光谱数据估计指数阻尼正弦曲线的参数

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We present fast maximum likelihood (FML) estimation of parameters of multiple exponentially damped sinusoids. The FML algorithm was motivated by the desire to analyze data that have many closely spaced components, such as the NMR spectroscopy data of human blood plasma. The computational efficiency of FML lies in reducing the multidimensional search involved in ML estimation into multiple 1-D searches. This is achieved by using our knowledge of the shape of the compressed likelihood function (CLF) in the parameter space. The proposed FML algorithm is an iterative method that decomposes the original data into its constituent signal components and estimates the parameters of the individual components efficiently using our knowledge of the shape of the CLF. The other striking features of the proposed algorithm are that it provides procedures for initialization, has a fast converging iteration stage, and makes use of the information extracted in preliminary iterations to segment the data suitably to increase the effective signal-to-noise ratio (SNR). The computational complexity and the performance of the proposed algorithm are compared with other existing methods such as those based on linear prediction, KiSS/IQML, alternating projections (AP), and expectation-maximization (EM).
机译:我们提出了多个指数阻尼正弦曲线参数的快速最大似然(FML)估计。 FML算法的动机是希望分析包含许多紧密间隔的成分的数据,例如人体血浆的NMR光谱数据。 FML的计算效率在于将ML估计中涉及的多维搜索减少为多个一维搜索。这是通过使用我们对参数空间中压缩似然函数(CLF)的形状的了解来实现的。所提出的FML算法是一种迭代方法,可以利用我们对CLF形状的了解,将原始数据分解成其组成的信号分量,并有效地估计各个分量的参数。该算法的另一个显着特点是它提供了初始化过程,具有快速收敛的迭代阶段,并利用在初步迭代中提取的信息对数据进行了分段,以适当地提高有效信噪比(SNR)。 )。将该算法的计算复杂度和性能与其他现有方法进行了比较,例如基于线性预测,KiSS / IQML,交替投影(AP)和期望最大化(EM)的方法。

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